Exploring EEG and Eye Movement Fusion for Multi-Class Target RSVP-BCI
Xujin Li, Wei Wei, Kun Zhao, Jiayu Mao, Yizhuo Lu, Shuang Qiu, and Huiguang He

TL;DR
This paper introduces a novel multi-modal EEG and eye movement fusion network, MTREE-Net, to improve multi-class RSVP-BCI decoding, supported by an open-source dataset and extensive experiments showing superior performance.
Contribution
The work presents a new multi-modal fusion network and dataset for multi-class RSVP-BCI, enhancing decoding accuracy by integrating EEG and eye movement signals.
Findings
MTREE-Net outperforms existing RSVP decoding methods.
Eye movement signals improve multi-class decoding accuracy.
The dataset enables further research in multi-class RSVP-BCI.
Abstract
Rapid Serial Visual Presentation (RSVP)-based Brain-Computer Interfaces (BCIs) facilitate high-throughput target image detection by identifying event-related potentials (ERPs) evoked in EEG signals. The RSVP-BCI systems effectively detect single-class targets within a stream of images but have limited applicability in scenarios that require detecting multiple target categories. Multi-class RSVP-BCI systems address this limitation by simultaneously identifying the presence of a target and distinguishing its category. However, existing multi-class RSVP decoding algorithms predominantly rely on single-modality EEG decoding, which restricts their performance improvement due to the high similarity between ERPs evoked by different target categories. In this work, we introduce eye movement (EM) modality into multi-class RSVP decoding and explore EEG and EM fusion to enhance decoding…
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Taxonomy
TopicsGaze Tracking and Assistive Technology · Advanced Decision-Making Techniques
